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A functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients

BACKGROUND: Pretreatment assessments for glioblastoma (GBM) patients, especially elderly or frail patients, are critical for treatment planning. However, genetic profiling with intracranial biopsy carries a significant risk of permanent morbidity. We previously demonstrated that the CUL2 gene, encod...

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Autores principales: Zander, Eric, Ardeleanu, Andrew, Singleton, Ryan, Bede, Barnabas, Wu, Yilin, Zheng, Shuhua
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Oxford University Press 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8765794/
https://www.ncbi.nlm.nih.gov/pubmed/35059640
http://dx.doi.org/10.1093/noajnl/vdab167
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author Zander, Eric
Ardeleanu, Andrew
Singleton, Ryan
Bede, Barnabas
Wu, Yilin
Zheng, Shuhua
author_facet Zander, Eric
Ardeleanu, Andrew
Singleton, Ryan
Bede, Barnabas
Wu, Yilin
Zheng, Shuhua
author_sort Zander, Eric
collection PubMed
description BACKGROUND: Pretreatment assessments for glioblastoma (GBM) patients, especially elderly or frail patients, are critical for treatment planning. However, genetic profiling with intracranial biopsy carries a significant risk of permanent morbidity. We previously demonstrated that the CUL2 gene, encoding the scaffold cullin2 protein in the cullin2-RING E3 ligase (CRL2), can predict GBM radiosensitivity and prognosis. CUL2 expression levels are closely regulated with its copy number variations (CNVs). This study aims to develop artificial neural networks (ANNs) for pretreatment evaluation of GBM patients with inputs obtainable without intracranial surgical biopsies. METHODS: Public datasets including Ivy-GAP, The Cancer Genome Atlas Glioblastoma (TCGA-GBM), and the Chinese Glioma Genome Atlas (CGGA) were used for training and testing of the ANNs. T1 images from corresponding cases were studied using automated segmentation for features of heterogeneity and tumor edge contouring. A ratio comparing the surface area of tumor borders versus the total volume (SvV) was derived from the DICOM-SEG conversions of segmented tumors. The edges of these borders were detected using the canny edge detector. Packages including Keras, Pytorch, and TensorFlow were tested to build the ANNs. A 4-layered ANN (8-8-8-2) with a binary output was built with optimal performance after extensive testing. RESULTS: The 4-layered deep learning ANN can identify a GBM patient’s overall survival (OS) cohort with 80%–85% accuracy. The ANN requires 4 inputs, including CUL2 copy number, patients’ age at GBM diagnosis, Karnofsky Performance Scale (KPS), and SvV ratio. CONCLUSION: Quantifiable image features can significantly improve the ability of ANNs to identify a GBM patients’ survival cohort. Features such as clinical measures, genetic data, and image data, can be integrated into a single ANN for GBM pretreatment evaluation.
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spelling pubmed-87657942022-01-19 A functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients Zander, Eric Ardeleanu, Andrew Singleton, Ryan Bede, Barnabas Wu, Yilin Zheng, Shuhua Neurooncol Adv Review BACKGROUND: Pretreatment assessments for glioblastoma (GBM) patients, especially elderly or frail patients, are critical for treatment planning. However, genetic profiling with intracranial biopsy carries a significant risk of permanent morbidity. We previously demonstrated that the CUL2 gene, encoding the scaffold cullin2 protein in the cullin2-RING E3 ligase (CRL2), can predict GBM radiosensitivity and prognosis. CUL2 expression levels are closely regulated with its copy number variations (CNVs). This study aims to develop artificial neural networks (ANNs) for pretreatment evaluation of GBM patients with inputs obtainable without intracranial surgical biopsies. METHODS: Public datasets including Ivy-GAP, The Cancer Genome Atlas Glioblastoma (TCGA-GBM), and the Chinese Glioma Genome Atlas (CGGA) were used for training and testing of the ANNs. T1 images from corresponding cases were studied using automated segmentation for features of heterogeneity and tumor edge contouring. A ratio comparing the surface area of tumor borders versus the total volume (SvV) was derived from the DICOM-SEG conversions of segmented tumors. The edges of these borders were detected using the canny edge detector. Packages including Keras, Pytorch, and TensorFlow were tested to build the ANNs. A 4-layered ANN (8-8-8-2) with a binary output was built with optimal performance after extensive testing. RESULTS: The 4-layered deep learning ANN can identify a GBM patient’s overall survival (OS) cohort with 80%–85% accuracy. The ANN requires 4 inputs, including CUL2 copy number, patients’ age at GBM diagnosis, Karnofsky Performance Scale (KPS), and SvV ratio. CONCLUSION: Quantifiable image features can significantly improve the ability of ANNs to identify a GBM patients’ survival cohort. Features such as clinical measures, genetic data, and image data, can be integrated into a single ANN for GBM pretreatment evaluation. Oxford University Press 2021-11-18 /pmc/articles/PMC8765794/ /pubmed/35059640 http://dx.doi.org/10.1093/noajnl/vdab167 Text en © The Author(s) 2021. Published by Oxford University Press, the Society for Neuro-Oncology and the European Association of Neuro-Oncology. https://creativecommons.org/licenses/by-nc/4.0/This is an Open Access article distributed under the terms of the Creative Commons Attribution-NonCommercial License (https://creativecommons.org/licenses/by-nc/4.0/), which permits non-commercial re-use, distribution, and reproduction in any medium, provided the original work is properly cited. For commercial re-use, please contact journals.permissions@oup.com
spellingShingle Review
Zander, Eric
Ardeleanu, Andrew
Singleton, Ryan
Bede, Barnabas
Wu, Yilin
Zheng, Shuhua
A functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients
title A functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients
title_full A functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients
title_fullStr A functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients
title_full_unstemmed A functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients
title_short A functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients
title_sort functional artificial neural network for noninvasive pretreatment evaluation of glioblastoma patients
topic Review
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8765794/
https://www.ncbi.nlm.nih.gov/pubmed/35059640
http://dx.doi.org/10.1093/noajnl/vdab167
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